Volume 57, Issue 1 p. 40-45

Real-Time Identification of Serious Infection in Geriatric Patients Using Clinical Information System Surveillance

William J. Meurer MD

William J. Meurer MD

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Barbara L. Smith BA

Barbara L. Smith BA

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Eve D. Losman MD

Eve D. Losman MD

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Diana Sherman RN

Diana Sherman RN

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Joseph D. Yaksich, RN ASN

Joseph D. Yaksich, RN ASN

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Jeremy D. Jared BS

Jeremy D. Jared BS

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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Preeti N. Malani MD, MSJ

Preeti N. Malani MD, MSJ

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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John G. Younger MD, MS

John G. Younger MD, MS

From the *Department of Emergency Medicine and Divisions of ‡Geriatrics and §Infectious Disease, Department of Internal Medicine, Ann Arbor Veterans Affairs Healthcare System, Geriatric Research, Education and Clinical Center, Ann Arbor, Michigan; and †Department of Anesthesiology and ∥Center for Computational Medicine and Biology, University of Michigan, Ann Arbor, Michigan.

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First published: 31 December 2008
Citations: 30
Address correspondence to William J. Meurer, Department of Emergency Medicine, University of Michigan, Taubman Center B1354 SPC 533, 1500 E. Medical Center Drive, Ann Arbor, MI 48109-5303. E-mail: [email protected]

Abstract

OBJECTIVES: To develop and characterize an automated syndromic surveillance mechanism for early identification of older emergency department (ED) patients with possible life-threatening infection.

DESIGN: Prospective, consecutive-enrollment, single-site observational study.

SETTING: A large university medical center with an annual ED census of 75,273.

PARTICIPANTS: Patients aged 70 and older admitted to the ED and having two or more systemic inflammatory response syndrome (SIRS) criteria during their ED stay.

MEASUREMENTS: A search algorithm was developed to screen the census of the ED through its clinical information system. A study coordinator confirmed all patients electronically identified as having a probable infectious explanation for their visit.

RESULTS: Infection accounted for 28% of ED and 34% of final hospital diagnoses. Identification using the software tool alone carried a 1.63 relative risk of infection (95% confidence interval CI=1.09–2.44) compared with other ED patients sufficiently ill to require admission. Follow-up confirmation by a study coordinator increased the risk to 3.06 (95% CI=2.11–4.44). The sensitivity of the strategy overall was modest (14%), but patients identified were likely to have an infectious diagnosis (specificity=98%). The most common SIRS criterion triggering the electronic notification was the combination of tachycardia and tachypnea.

CONCLUSION: A simple clinical informatics algorithm can detect infection in elderly patients in real time with high specificity. The utility of this tool for research and clinical care may be substantial.